2022
DOI: 10.3390/su14031800
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Predicting Online Complaining Behavior in the Hospitality Industry: Application of Big Data Analytics to Online Reviews

Abstract: Purpose: This study aims to enrich the published literature on hospitality and tourism by applying big data analytics and data mining algorithms to predict travelers’ online complaint attributions to significantly different hotel classes (i.e., higher star-rating and lower star-rating). Design/methodology/approach: First, 1992 valid online complaints were manually obtained from over 350 hotels located in the UK. The textual data were converted into structured data by utilizing content analysis. Ten complaint a… Show more

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Cited by 32 publications
(18 citation statements)
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References 57 publications
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“…Leung et al [ 79 ] also find that Chinese customers tend to post more reviews than other nationalities. Furthermore, customers at relatively higher-scaled hotels, such as those with five stars, tend to post reviews more often [ 80 ]. This fact may potentially lead to a discrepancy between star ratings and customer review scores.…”
Section: Discussion and Comparisonsmentioning
confidence: 99%
“…Leung et al [ 79 ] also find that Chinese customers tend to post more reviews than other nationalities. Furthermore, customers at relatively higher-scaled hotels, such as those with five stars, tend to post reviews more often [ 80 ]. This fact may potentially lead to a discrepancy between star ratings and customer review scores.…”
Section: Discussion and Comparisonsmentioning
confidence: 99%
“…are also found to be related to CCB (Berry et al, 2018;Gursoy et al, 2007;Soares et al, 2017;Souiden et al, 2019;Tosun et al, 2022). Research in the last three years in the area of CCB focused on similar aspects such as classification of consumers and (Arora and Chakraborty, 2021) and exploring the CCB by implementing data mining and data analytics techniques (Sann et al, 2022).…”
Section: Backdrop Conceptual Framework and Research Questionsmentioning
confidence: 99%
“…, 2022). Research in the last three years in the area of CCB focused on similar aspects such as classification of consumers and (Arora and Chakraborty, 2021) and exploring the CCB by implementing data mining and data analytics techniques (Sann et al. , 2022).…”
Section: Backdrop Conceptual Framework and Research Questionsmentioning
confidence: 99%
“…Ghazzawi ve Alharbi [32] tarafından yapılan çalışmada şikâyet kayıtları, naive bayes, KNN, rastgele orman ağaçları ve karar ağacı (ID3) gibi bir dizi makine öğrenmesi yöntemleri yordamıyla acentelere göre sınıflandırılmıştır. Yeni yapılan çalışmalardan birinde [33], farklı karar ağacı modelleri (C&R, QUEST, CHAID, C5.0) kullanılarak farklı otel sınıflarından misafirlerin çevrimiçi şikayet davranışları ile şikayet özellikleri arasında var olabilecek olası ilişki araştırılmıştır. Görüldüğü üzere yakın literatürde, müşteri şikayetlerini incelemek amaçlı çok çeşitli veri madenciliği teknikleri kullanılmış olmasına rağmen, firmaların şikâyet yönetimindeki performanslarını inceleyen bir araştırma bulunmaktadır.…”
Section: Müşteri şIkayetleri Analizinde Veri Madenciliği Uygulamalarıunclassified